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Publications

Comparison of Surface Models and Skeletal Models for Inertial Sensor Data Synthesis

Publication Type Conference Paper
Authors Lena Uhlenberg, Oliver Amft
Title Comparison of Surface Models and Skeletal Models for Inertial Sensor Data Synthesis
Abstract We present a modelling and simulation framework to synthesise body-worn inertial sensor data based on personalised human body surface and biomechanical models. Anthropometric data and reference images were used to create personalised body surface mesh models. The mesh armature was aligned using motion capture reference pose and afterwards mesh and armature were parented. In addition, skeletal models were created using an established musculoskeletal dynamic modelling framework. Four activities of daily living (ADL), including upper and lower limbs were simulated with surface and skeletal models using motion capture data as stimuli. Acceleration and angular velocity data were simulated for 12 body areas of surface models and 8 body areas of skeletal models. We compared simulated inertial sensor data of both models against physical IMU measurements that were obtained simultaneously with video motion capture. Results showed average errors of 27° vs. 31° and 1.7 m/s2 vs. 3.3 m/s2 for surface and skeletal models, respectively. Mean correlation coefficients of body surface models ranged between 0.2 – 0.9 for simulated angular velocity and between 0.1 – 0.8 for simulated acceleration when compared to physical IMU data. The proposed surface modelling consistently showed similar or lower error compared to established skeletal modelling across ADLs and study participants. Body surface models can offer a more realistic representation compared to skeletal models for simulation-based analysis and optimisation of wearable inertial sensor systems.
Date 27-20. Sept. 2022
Proceedings Title 2022 IEEE-EMBS International Conference on Wearable and Implantable Body Sensor Networks (BSN)
Conference Name 2022 IEEE-EMBS International Conference on Wearable and Implantable Body Sensor Networks (BSN)
Place Ioannina, Greece
Publisher IEEE
DOI 10.1109/BSN56160.2022.9928504
ISBN 2376-8894
Full Text PDF
Friedrich-Alexander-Universität Erlangen-Nürnberg